Rethinking Document-level Neural Machine Translation
Abstract
This paper does not aim at introducing a novel model for document-level neural machine translation. Instead, we head back to the original Transformer model and hope to answer the following question: Is the capacity of current models strong enough for document-level translation? Interestingly, we observe that the original Transformer with appropriate training techniques can achieve strong results for document translation, even with a length of 2000 words. We evaluate this model and several recent approaches on nine document-level datasets and two sentence-level datasets across six languages. Experiments show that document-level Transformer models outperforms sentence-level ones and many previous methods in a comprehensive set of metrics, including BLEU, four lexical indices, three newly proposed assistant linguistic indicators, and human evaluation.
Cite
@article{arxiv.2010.08961,
title = {Rethinking Document-level Neural Machine Translation},
author = {Zewei Sun and Mingxuan Wang and Hao Zhou and Chengqi Zhao and Shujian Huang and Jiajun Chen and Lei Li},
journal= {arXiv preprint arXiv:2010.08961},
year = {2022}
}
Comments
Previous Title: Capturing Longer Context for Document-level Neural Machine Translation: A Multi-resolutional Approach. ---------- (The current version is accepted in ACL-2022 Findings)